Monitoring finer-scale population density in urban functional zones: A remote sensing data fusion approach

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Monitoring finer-scale population density in urban functional zones : A remote sensing data fusion approach. / Song, Jinchao; Tong, Xiaoye; Wang, Lizhe; Zhao, Chunli; Prishchepov, Alexander V.

I: Landscape and Urban Planning, Bind 190, 103580, 2019.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Song, J, Tong, X, Wang, L, Zhao, C & Prishchepov, AV 2019, 'Monitoring finer-scale population density in urban functional zones: A remote sensing data fusion approach', Landscape and Urban Planning, bind 190, 103580. https://doi.org/10.1016/j.landurbplan.2019.05.011

APA

Song, J., Tong, X., Wang, L., Zhao, C., & Prishchepov, A. V. (2019). Monitoring finer-scale population density in urban functional zones: A remote sensing data fusion approach. Landscape and Urban Planning, 190, [103580]. https://doi.org/10.1016/j.landurbplan.2019.05.011

Vancouver

Song J, Tong X, Wang L, Zhao C, Prishchepov AV. Monitoring finer-scale population density in urban functional zones: A remote sensing data fusion approach. Landscape and Urban Planning. 2019;190. 103580. https://doi.org/10.1016/j.landurbplan.2019.05.011

Author

Song, Jinchao ; Tong, Xiaoye ; Wang, Lizhe ; Zhao, Chunli ; Prishchepov, Alexander V. / Monitoring finer-scale population density in urban functional zones : A remote sensing data fusion approach. I: Landscape and Urban Planning. 2019 ; Bind 190.

Bibtex

@article{42b7bb87c9db4c0783fe35d3a488d42c,
title = "Monitoring finer-scale population density in urban functional zones: A remote sensing data fusion approach",
abstract = "Spatial distribution information on population density is essential for understanding urban dynamics. In recent decades, remote sensing techniques have often been applied to assess population density, particularly night-time light data (NTL). However, such attempts have resulted in mapped population density at coarse/medium resolution, which often limits the applicability of such data for fine-scale territorial planning. The improved quality and availability of multi-source remote sensing imagery and location-based service data (LBS) (from mobile networks or social media) offers new potential for providing more accurate population information at the micro-scale level. In this paper, we developed a fine-scale population distribution mapping approach by combining the functional zones (FZ) mapped with high-resolution satellite images, NTL data, and LBS data. Considering the possible variations in the relationship between population distribution and nightlight brightness in functional zones, we tested and found spatial heterogeneity of the relationship between NTL and the population density of LBS samples. Geographically weighted regression (GWR) was thus implemented to test potential improvements to the mapping accuracy. The performance of the following four models was evaluated: only ordinary least squares regression (OLS), only GWR, OLS with functional zones (OLS&FZ) and GWR with functional zones (GWR&FZ). The results showed that NTL-based GWR&FZ was the most accurate and robust approach, with an accuracy of 0.71, while the mapped population density was at a unit of 30 m spatial resolution. The detailed population density maps developed in our approach can contribute to fine-scale urban planning, healthcare and emergency responses in many parts of the world.",
keywords = "Geographically weighted regression, Land use, LBS, Spatial heterogeneity, Urban functional zone",
author = "Jinchao Song and Xiaoye Tong and Lizhe Wang and Chunli Zhao and Prishchepov, {Alexander V.}",
year = "2019",
doi = "10.1016/j.landurbplan.2019.05.011",
language = "English",
volume = "190",
journal = "Landscape and Urban Planning",
issn = "0169-2046",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Monitoring finer-scale population density in urban functional zones

T2 - A remote sensing data fusion approach

AU - Song, Jinchao

AU - Tong, Xiaoye

AU - Wang, Lizhe

AU - Zhao, Chunli

AU - Prishchepov, Alexander V.

PY - 2019

Y1 - 2019

N2 - Spatial distribution information on population density is essential for understanding urban dynamics. In recent decades, remote sensing techniques have often been applied to assess population density, particularly night-time light data (NTL). However, such attempts have resulted in mapped population density at coarse/medium resolution, which often limits the applicability of such data for fine-scale territorial planning. The improved quality and availability of multi-source remote sensing imagery and location-based service data (LBS) (from mobile networks or social media) offers new potential for providing more accurate population information at the micro-scale level. In this paper, we developed a fine-scale population distribution mapping approach by combining the functional zones (FZ) mapped with high-resolution satellite images, NTL data, and LBS data. Considering the possible variations in the relationship between population distribution and nightlight brightness in functional zones, we tested and found spatial heterogeneity of the relationship between NTL and the population density of LBS samples. Geographically weighted regression (GWR) was thus implemented to test potential improvements to the mapping accuracy. The performance of the following four models was evaluated: only ordinary least squares regression (OLS), only GWR, OLS with functional zones (OLS&FZ) and GWR with functional zones (GWR&FZ). The results showed that NTL-based GWR&FZ was the most accurate and robust approach, with an accuracy of 0.71, while the mapped population density was at a unit of 30 m spatial resolution. The detailed population density maps developed in our approach can contribute to fine-scale urban planning, healthcare and emergency responses in many parts of the world.

AB - Spatial distribution information on population density is essential for understanding urban dynamics. In recent decades, remote sensing techniques have often been applied to assess population density, particularly night-time light data (NTL). However, such attempts have resulted in mapped population density at coarse/medium resolution, which often limits the applicability of such data for fine-scale territorial planning. The improved quality and availability of multi-source remote sensing imagery and location-based service data (LBS) (from mobile networks or social media) offers new potential for providing more accurate population information at the micro-scale level. In this paper, we developed a fine-scale population distribution mapping approach by combining the functional zones (FZ) mapped with high-resolution satellite images, NTL data, and LBS data. Considering the possible variations in the relationship between population distribution and nightlight brightness in functional zones, we tested and found spatial heterogeneity of the relationship between NTL and the population density of LBS samples. Geographically weighted regression (GWR) was thus implemented to test potential improvements to the mapping accuracy. The performance of the following four models was evaluated: only ordinary least squares regression (OLS), only GWR, OLS with functional zones (OLS&FZ) and GWR with functional zones (GWR&FZ). The results showed that NTL-based GWR&FZ was the most accurate and robust approach, with an accuracy of 0.71, while the mapped population density was at a unit of 30 m spatial resolution. The detailed population density maps developed in our approach can contribute to fine-scale urban planning, healthcare and emergency responses in many parts of the world.

KW - Geographically weighted regression

KW - Land use

KW - LBS

KW - Spatial heterogeneity

KW - Urban functional zone

U2 - 10.1016/j.landurbplan.2019.05.011

DO - 10.1016/j.landurbplan.2019.05.011

M3 - Journal article

AN - SCOPUS:85066312662

VL - 190

JO - Landscape and Urban Planning

JF - Landscape and Urban Planning

SN - 0169-2046

M1 - 103580

ER -

ID: 225602646